The Digital Transformation Playbook
Kieran Gilmurray is a globally recognised authority on Artificial Intelligence, cloud, intelligent automation, data analytics, agentic AI, and digital transformation.
He has authored three influential books and hundreds of articles that have shaped industry perspectives on digital transformation, data analytics, intelligent automation, agentic AI and artificial intelligence.
𝗪𝗵𝗮𝘁 does Kieran do❓
When I'm not chairing international conferences, serving as a fractional CTO or Chief AI Officer, I’m delivering AI, leadership, and strategy masterclasses to governments and industry leaders.
My team and I help global businesses drive AI, agentic ai, digital transformation and innovation programs that deliver tangible business results.
🏆 𝐀𝐰𝐚𝐫𝐝𝐬:
🔹Top 25 Thought Leader Generative AI 2025
🔹𝗧𝗼𝗽 𝟱𝟬 𝗧𝗵𝗼𝘂𝗴𝗵𝘁 𝗟𝗲𝗮𝗱𝗶𝗻𝗴 𝗖𝗼𝗺𝗽𝗮𝗻𝗶𝗲𝘀 𝗼𝗻 𝗚𝗲𝗻𝗲𝗿𝗮𝘁𝗶𝘃𝗲 𝗔𝗜 𝟮𝟬𝟮𝟱
🔹Top 50 Global Thought Leaders and Influencers on Agentic AI 2025
🔹Top 100 Thought Leader Agentic AI 2025
🔹Top 100 Thought Leader Legal AI 2025
🔹Team of the Year at the UK IT Industry Awards
🔹Top 50 Global Thought Leaders and Influencers on Generative AI 2024
🔹Top 50 Global Thought Leaders and Influencers on Manufacturing 2024
🔹Best LinkedIn Influencers Artificial Intelligence and Marketing 2024
🔹Seven-time LinkedIn Top Voice.
🔹Top 14 people to follow in data in 2023.
🔹World's Top 200 Business and Technology Innovators.
🔹Top 50 Intelligent Automation Influencers.
🔹Top 50 Brand Ambassadors.
🔹Global Intelligent Automation Award Winner.
🔹Top 20 Data Pros you NEED to follow.
𝗖𝗼𝗻𝘁𝗮𝗰𝘁 my team and I to get business results, not excuses.
☎️ https://calendly.com/kierangilmurray/30min
✉️ kieran@gilmurray.co.uk
🌍 www.KieranGilmurray.com
📘 Kieran Gilmurray | LinkedIn
The Digital Transformation Playbook
AI, Explained Simply
Curiosity meets clarity as we unpack what AI really is, why it matters today, and how it quietly powers so much of modern life. From the messages you send to the movies you stream and the scans your doctor reads, we trace the path from decades of research to the tools now shaping daily choices.
TL;DR:
- Foundations of machine learning and deep learning
- How language models power chatbots and support teams
- Speech recognition and intent with voice assistants
- Computer vision in healthcare and safety use cases
- Generative text, images, and music with open questions on ownership
- Autonomy on the road and why oversight is needed
- Personalisation, data tracking, and fairness risks
- Multimodal models and unsupervised learning trends
- Regulation, deepfakes, and responsible deployment
We start by demystifying learning from data: how models train on text, images, and audio, and why feedback loops make them sharper over time. Then we dive into large language models and the chatbots built on them—how they handle context, summarise information, and scale support across banking, education, and customer service. Voice takes the spotlight next, with natural language processing turning speech into intent so assistants can check weather, move money, or manage reminders with surprising accuracy.
Vision changes the game in healthcare and safety, where systems detect tumours, fractures, and hazards at speed, supporting clinicians rather than replacing them. Creativity gets a boost with generative AI that drafts articles, composes music, and renders images from plain prompts. That power sparks new questions about copyright, consent, and compensation—issues creators and lawmakers are racing to resolve. We also look at autonomy on the road, where self-driving features rely on real-time perception and strict oversight to navigate messy, human streets.
Personalisation brings both convenience and concerns. By analysing searches, clicks, and purchases, AI predicts preferences to serve recommendations and ads, raising tough questions about privacy, fairness, and control. Finally, we explore the frontier: multimodal models that understand text, images, and speech together, and unsupervised learning that uncovers patterns without human labels. With benefits come risks—bias, misinformation, deepfakes—and emerging rules like the EU AI Act aim to keep innovation accountable and transparent.
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Your questions shape future episodes—what should we dig into next?
Why not read the full article here: AI for Beginners: Understand the Basics Fast
𝗖𝗼𝗻𝘁𝗮𝗰𝘁 my team and I to get business results, not excuses.
☎️ https://calendly.com/kierangilmurray/results-not-excuses
✉️ kieran@gilmurray.co.uk
🌍 www.KieranGilmurray.com
📘 Kieran Gilmurray | LinkedIn
🦉 X / Twitter: https://twitter.com/KieranGilmurray
📽 YouTube: https://www.youtube.com/@KieranGilmurray
📕 Want to learn more about agentic AI then read my new book on Agentic AI and the Future of Work https://tinyurl.com/MyBooksOnAmazonUK
Understanding Artificial Intelligence, a beginner's guide to the technology changing the world. What is AI and why it matters? Artificial intelligence is no longer futuristic. It already powers how we shop, communicate, and even receive medical care. Tools like ChatGPT and Midjourney brought AI into mainstream debate, but the real foundation lies in decades of research in machine learning, deep learning, and pattern recognition. This guide explains how AI works, what it can do, and why it matters for everyone. How AI learns. AI learns through training, analyzing massive data sets of text, images, and sounds to identify patterns. With feedback, it improves performance over time. A well-trained AI can process millions of examples in hours, achieving results that take humans years. Chatbots and language models. Chat GPT and similar systems use large language models, LLMS, trained on vast language data. They don't just mimic words, they understand context, making conversations sound human. That is why industries from banking to education now use them to improve communication and service. Speaking and listening, natural language processing. Virtual assistants like Siri and Alexa rely on natural language processing to convert speech into text, interpret meaning, and respond intelligently. They can handle routine tasks like checking weather or transferring money thanks to millions of hours of voice data training. Can AI see? Through computer vision, AI recognizes faces, objects, and emotions in photos and videos. In healthcare, it detects tumors and fractures faster and sometimes more accurately than doctors, supporting, not replacing, human experts. Generative AI and Creativity. Generative AI creates original text, music, and art from written prompts. Trained on huge data sets, it can generate new images in seconds. Yet questions remain. If it learns from copyrighted work, who owns the output? Legal and ethical frameworks are still evolving. AI on the road. They already operate in some cities, but real world unpredictability means human oversight and regulation remain essential. What AI knows about you? AI tracks digital behavior, searches, clicks, purchases, to predict preferences. This drives personalized ads and recommendations, but also raises privacy and fairness concerns. Data governance still lags behind innovation. Multimodal and self-learning systems. The newest models like GPT-4 understand text, images, and speech together, a step toward more general intelligence. AI now learns through unsupervised methods, finding patterns without human labels, making systems more flexible and powerful. Should we be concerned? Bias, misinformation, and deepfakes are real risks. Misused data can entrench inequality. Governments are racing to regulate, with the EU's AI Act among the first attempts to enforce responsible use. The road ahead.